Title:
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DISCOVERY OF CUSTOMER SATISFACTION
DIMENSION FROM TWEETS USING LATENT DIRICHLET
ALLOCATION |
Author(s):
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Iqbal Hadiyan, Achmad Nizar Hidayanto and Satrio Baskoro Yudhoatmojo |
ISBN:
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978-989-8533-90-6 |
Editors:
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Piet Kommers and Guo Chao Peng |
Year:
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2019 |
Edition:
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Single |
Keywords:
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Customer Satisfaction Dimensions, Latent Dirichlet Allocation, Twitter, Social Media, Text Mining |
Type:
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Full Paper |
First Page:
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285 |
Last Page:
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292 |
Language:
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English |
Cover:
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Full Contents:
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click to dowload
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Paper Abstract:
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Customer satisfaction of a service or product is reflected in the customers attitude towards the service or product once
the customer perceived or used the service or product. Customer satisfaction has many dimensions, and previous studies
have identified and used those many dimensions to measure the customer satisfaction of a certain service or product. In
this study, we explore the use of text mining techniques of modeling topic as a way of discovering customer satisfaction
dimensions, and we used tweets data from Twitter as our dataset. These are our contributions. We believed that this
approach had not been used for discovering customer satisfaction dimensions. We used Latent Dirichlet Allocation for
the topic modeling, and perplexity model and topic coherence are used for optimizing the number of topics. We would
then choose representative words for each topic formed using Latent Dirichlet Allocation. The name of the topic is added
by analyzing the logical relationships between the representative words and find the semantic meaning of the
representative words in the context of the original tweets. These are done manually by the authors. Once the labels have
been identified, we associate the labels to the original tweets. The identified topics in our study become customer
satisfaction dimensions. The last task in our study is comparing the identified dimensions with dimensions in previous
studies. In this task, we needed to broaden the definition of dimensions from previous studies. The result shows our
identified dimensions are fitted with the dimensions from previous studies. The main differences are the naming of the
dimensions and the granularity of the dimensions. Our identified dimensions have finer granularity than previous studies.
Our study enables the decision maker to be informed with the current dimensions, which are mattered by the customer in
using the organizations services or products. Once the tweets are labeled to the identified topic names, we can sort the
topics having the most documents. This result shows important issues which are discussed by the customers. |
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